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Deep Learning Guided Partitioned Shape Model for Anterior Visual Pathway Segmentation

机译:深度学习引导分割形状模型用于前路视觉通路分割

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摘要

Analysis of cranial nerve systems, such as the anterior visual pathway (AVP), from MRI sequences is challenging due to their thin long architecture, structural variations along the path, and low contrast with adjacent anatomic structures. Segmentation of a pathologic AVP (e.g., with low-grade gliomas) poses additional challenges. In this work, we propose a fully automated partitioned shape model segmentation mechanism for AVP steered by multiple MRI sequences and deep learning features. Employing deep learning feature representation, this framework presents a joint partitioned statistical shape model able to deal with healthy and pathological AVP. The deep learning assistance is particularly useful in the poor contrast regions, such as optic tracts and pathological areas. Our main contributions are: 1) a fast and robust shape localization method using conditional space deep learning, 2) a volumetric multiscale curvelet transform-based intensity normalization method for robust statistical model, and 3) optimally partitioned statistical shape and appearance models based on regional shape variations for greater local flexibility. Our method was evaluated on MRI sequences obtained from 165 pediatric subjects. A mean Dice similarity coefficient of 0.779 was obtained for the segmentation of the entire AVP (optic nerve only ) using the leave-one-out validation. Results demonstrated that the proposed localized shape and sparse appearance-based learning approach significantly outperforms current state-of-the-art segmentation approaches and is as robust as the manual segmentation.
机译:MRI序列对颅神经系统的分析,例如前视觉通路(AVP),由于其细长的结构,沿路径的结构变化以及与相邻解剖结构的对比度低而具有挑战性。病理性AVP的分割(例如低度神经胶质瘤)带来了其他挑战。在这项工作中,我们提出了由多个MRI序列和深度学习功能控制的AVP的全自动分区形状模型分割机制。利用深度学习特征表示,该框架提供了一种能够处理健康和病理性AVP的联合分区统计形状模型。深度学习协助在对比度较差的区域(例如视线和病理区域)特别有用。我们的主要贡献是:1)使用条件空间深度学习的快速且鲁棒的形状定位方法; 2)基于体积多尺度Curvelet变换的强度归一化方法用于鲁棒统计模型; 3)基于区域的最优分区统计形状和外观模型形状变化以获得更大的局部灵活性。我们的方法是对从165名儿科受试者获得的MRI序列进行评估的。使用留一法验证,整个AVP(仅视神经)的分割得到的平均Dice相似系数为0.779。结果表明,所提出的基于局部形状和稀疏外观的学习方法明显优于当前的最新分割方法,并且与手动分割一样强大。

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